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Using Intermediate Representations to Solve Math Word Problems

机译:使用中间表示来解决数学词问题

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To solve math word problems, previous statistical approaches attempt at learning a direct mapping from a problem description to its corresponding equation system. However, such mappings do not include the information of a few higher-order operations that cannot be explicitly represented in equations but are required to solve the problem. The gap between natural language and equations makes it difficult for a learned model to generalize from limited data. In this work we present an intermediate meaning representation scheme that tries to reduce this gap. We use a sequence-to-sequence model with a novel attention regularization term to generate the intermediate forms, then execute them to obtain the final answers. Since the intermediate forms are latent, we propose an iterative labeling framework for learning by leveraging supervision signals from both equations and answers. Our experiments show using intermediate forms outperforms directly predicting equations.
机译:为了解决数学词问题,先前的统计方法尝试从问题描述中学习直接映射到其对应的等式系统。然而,这种映射不包括少数高阶操作的信息不能明确地在方程中明确地表示,但是需要解决问题。自然语言与方程之间的差距使学习模型难以从有限的数据概括。在这项工作中,我们提出了一种中间意义代表计划,以减少这种差距。我们使用序列到序列模型具有新的注意力正则化术语来生成中间形式,然后执行它们以获得最终答案。由于中间形式是潜伏的,我们提出了一种迭代标记框架,用于通过利用来自方程和答案的监督信号来学习。我们的实验显示使用中间形式优于直接预测方程式。

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